Personal positioning and location inference (II)
The proliferation of the mobile technologies and high speed internet connection in recent years has led to an exponential increase in the generation and storage of data. These generated datasets are often very large in volume and as a result, manual methods of data analysis are rendered ine...
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sg-ntu-dr.10356-397682023-03-03T20:35:32Z Personal positioning and location inference (II) Muhammad Noor Hardee Rupaii. Hsu Wen Jing School of Computer Engineering DRNTU::Engineering::Computer science and engineering::Information systems The proliferation of the mobile technologies and high speed internet connection in recent years has led to an exponential increase in the generation and storage of data. These generated datasets are often very large in volume and as a result, manual methods of data analysis are rendered ineffective to extract any useful or accurately identify any patterns of interest. As such, an emerging field of data mining is being developed in computer science in an attempt to transform these raw data into useful and understandable patterns. This project attempts to use data mining techniques implemented in the Java language to identify patterns of interest from a dataset of GPS coordinates corresponding to a person’s movement gathered over a period of time. Using techniques such as cluster analysis, the project attempts to identify locales that are of significance to the user by using various criteria such as the frequency of which the person returns to the location as well as the cumulative amount of time that the user spends at a particular location. Further to the abovementioned, the project attempts to identify patterns of movement by the user and ultimately establish routes or paths that link the significant locales to one another. In addition, a visual representation of the results is also generated using a map overlay in a Google Maps application. The overlay highlights points on the map that have been identified as significant locales as well as paths linking these identified locales. Bachelor of Engineering (Computer Science) 2010-06-04T01:26:53Z 2010-06-04T01:26:53Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/39768 en Nanyang Technological University 47 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Information systems Muhammad Noor Hardee Rupaii. Personal positioning and location inference (II) |
description |
The proliferation of the mobile technologies and high speed internet connection in recent years
has led to an exponential increase in the generation and storage of data. These generated datasets
are often very large in volume and as a result, manual methods of data analysis are rendered
ineffective to extract any useful or accurately identify any patterns of interest. As such, an
emerging field of data mining is being developed in computer science in an attempt to transform
these raw data into useful and understandable patterns.
This project attempts to use data mining techniques implemented in the Java language to identify
patterns of interest from a dataset of GPS coordinates corresponding to a person’s movement
gathered over a period of time. Using techniques such as cluster analysis, the project attempts to
identify locales that are of significance to the user by using various criteria such as the frequency
of which the person returns to the location as well as the cumulative amount of time that the user
spends at a particular location. Further to the abovementioned, the project attempts to identify
patterns of movement by the user and ultimately establish routes or paths that link the significant
locales to one another.
In addition, a visual representation of the results is also generated using a map overlay in a
Google Maps application. The overlay highlights points on the map that have been identified as
significant locales as well as paths linking these identified locales. |
author2 |
Hsu Wen Jing |
author_facet |
Hsu Wen Jing Muhammad Noor Hardee Rupaii. |
format |
Final Year Project |
author |
Muhammad Noor Hardee Rupaii. |
author_sort |
Muhammad Noor Hardee Rupaii. |
title |
Personal positioning and location inference (II) |
title_short |
Personal positioning and location inference (II) |
title_full |
Personal positioning and location inference (II) |
title_fullStr |
Personal positioning and location inference (II) |
title_full_unstemmed |
Personal positioning and location inference (II) |
title_sort |
personal positioning and location inference (ii) |
publishDate |
2010 |
url |
http://hdl.handle.net/10356/39768 |
_version_ |
1759857769322643456 |